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An energy-efficient fuzzy-based scheme for unequal multihop clustering in wireless sensor networks

机译:无线传感器网络中不等多跳聚类的节能模糊方案

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Currently, wireless sensor networks (WSNs) are providing practical solutions for various applications, including smart agriculture and healthcare, and have provided essential support by wirelessly connecting the numerous nodes or sensors that function in sensing systems needed for transmission to backends via multiple hops for data analysis. One key limitation of these sensors is the self-contained energy provided by the embedded battery due to their (tiny) size, (in) accessibility, and (low) cost constraints. Therefore, a key challenge is to efficiently control the energy consumption of the sensors, or in other words, to prolong the overall network lifetime of a large-scale sensor farm. Studies have worked toward optimizing energy in communication, and one promising approach focuses on clustering. In this approach, a cluster of sensors is formed, and its representatives, namely, a cluster head (CH) and cluster members (CMs), with the latter transmitting the sensing data within a short range to the CH. The CH then aggregates the data and forwards it to the base station (BS) using a multihop method. However, maintaining equal clustering regardless of key parameters such as distance and density potentially results in a shortened network lifetime. Thus, this study investigates the application of fuzzy logic (FL) to determine various parameters and membership functions and thereby obtain appropriate clustering criteria. We propose an FL-based clustering architecture consisting of four stages: competition radius (CR) determination, CH election, CM joining, and determination of selection criteria for the next CH (relaying). A performance analysis was conducted against state-of-the-art distributed clustering protocols, i.e., the multiobjective optimization fuzzy clustering algorithm (MOFCA), energy-efficient unequal clustering (EEUC), distributed unequal clustering using FL (DUCF), and the energy-aware unequal clustering fuzzy (EAUCF) scheme. The proposed method displayed promising performance in terms of network lifetime and energy usage.
机译:目前,无线传感器网络(WSN)是提供用于各种应用,包括智能农业和医疗保健的实际解决方案,并且已经通过无线连接的许多节点或传感器提供必要的支持,在经由多跳数据传输所需至后端的感测系统的功能分析。这些传感器的一个关键限制是由于其(微小)尺寸,(IN)可访问性和(低)成本约束而提供的嵌入式电池提供的自包含能量。因此,关键挑战是有效地控制传感器的能量消耗,或换句话说,延长大型传感器场的整体网络寿命。研究致力于优化通信中的能量,并且一个有希望的方法侧重于聚类。在这种方法中,形成了一组传感器,以及其代表,即簇头(CH)和集群成员(CMS),后者在短程范围内发送传感数据。然后,CH将数据汇总并使用多跳方法将其转发到基站(BS)。但是,无论距离和密度等关键参数,都会保持相等的聚类可能导致缩短网络寿命。因此,本研究调查了模糊逻辑(FL)的应用来确定各种参数和隶属函数,从而获得适当的聚类标准。我们提出了由四个阶段组成的FL基聚类架构:竞争半径(CR)测定,CH选举,CM加入和下一个CH(中继)的选择标准的确定标准。针对现有技术分布式聚类协议进行性能分析,即多目标优化模糊聚类算法(MOFCA),节能不等聚类(EEUC),使用FL(DUFF)和能量分布不等聚类-AWARE不平等的聚类模糊(EACF)计划。所提出的方法在网络寿命和能源使用方面显示了有希望的性能。

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